叶片是风电机组的核心部件,其结构损伤不仅会降低风力发电的效率,还可能威胁机组的整体安全。针对这一问题,采用基于自助法的Hotelling T
2
控制图进行叶片状态监测。首先,对叶片振动信号进行预处理,以提取与故障相关的特征;随后,利用自助法设计控制图,以确保其能准确反映正常状态下的叶片振动模式;最后,利用训练好的控制图对叶片进行状态监测。与分类模型和经典控制图相比,该方法仅使用正常状态下的特征进行学习,并依据自助法确定控制图的阈值,从而降低了对数据的要求。实际应用案例表明,基于自助法的Hotelling T
2
控制图能够及时检测到叶片的状态变化。
Abstract
The blades are the core components of wind turbines
and their structural damage will not only reduce the efficiency of wind power generation
but also may threaten the overall safety of wind turbines. To address this problem
a Bootstrap-based Hotelling T2 control chart is adopted for condition monitoring of blades. Firstly
the vibration signals of blades are preprocessed to extract fault-related features. And then
the Bootstrap method is used to design the control chart to ensure that it can accurately reflect the blade vibration patterns under normal condition. Finally
the trained control chart is utilized to monitor the state of blades. Compared with classification models and classical control charts
the proposed method can reduce the requirements of data by using only the features of normal condition for learning and determining the threshold of control chart based on Bootstrap method. Practical application shows that the Bootstrap-based Hotelling T2 control chart can effectively detect the state changes of blades.
A Joshuva.,V Sugumaran..A data driven approach for condition monitoring of wind turbine blade using vibration signals through best-first tree algorithm and functional trees algorithm: A comparative study[J].ISA Transactions,2017.